Understanding Cellular Network Performance in User Context

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Explore the importance of capturing in-context measurements of cellular network performance, including factors to consider, existing approaches, use cases, and empirical studies. Learn how network data, controlled experiments, and active measurements contribute to enhancing user experience.


Uploaded on Sep 27, 2024 | 0 Views


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  1. Obtaining In-Context Measurements of Cellular Network Performance Aaron Gember, Aditya Akella University of Wisconsin-Madison Jeffrey Pang, Alexander Varshavsky, Ramon Caceres AT&T Labs 1

  2. Performance During User Activity Performance users likely experience? when interacting with their device 2

  3. In-Context Measurements Limit to specific contexts Whether a user is interacting with their device Device model & OS version Time, place, & speed when the network is used Representative distribution of contexts Want to accurately reflect the range of performance experienced by users 3

  4. Use Cases Evaluate effect of network changes Narrow cause of poor network performance Compare cellular network providers 4

  5. How do we capture in-context measurements of cellular network performance? 5

  6. Existing Approaches Network-based Passive Analysis 1) Difficult to determine or control context Self-initiated Reporting 1) Requires manual user intervention 2) Most users only report problems Field Testing 2) Difficult to eliminate confounding factors 1) Limited range of contexts 2) May not accurately reflect usage patterns 6

  7. Our Contributions Empirical Study Measurement System Network data from 20,000 subscribers 100s of controlled experiments Crowdsource active measurements Deploy to 12 volunteers What factors need to be considered to capture in-context measurements? Measurements depict performance experienced while user is active 7

  8. Empirical Study 1) How does performance differ between the times users actually use their devices versus times the devices are unused? 2) What aspects of a device s physical context contributes to the observed differences? 3) What is the allowable overlap between user traffic and measurement probes? 8

  9. Active vs. Idle Devices 1) How does performance differ between the times users actually use their devices versus times the devices are unused? Flow records from 20,000 subscribers TCP keep-alives for specific service Active range: time between start and end of non-background flows Idle: > 30 minutes since last active range 9

  10. Active vs. Idle Devices Latency Loss 16ms lower when idle 6% less when idle active active idle idle active active idle idle Measurements on idle devices may overestimate performance 10

  11. Active vs. Idle Devices What causes the performance differences? Time of day Coarse geo-location Signal strength Other low-level factors Signal Strength No correlation active idle idle active 11

  12. Impact of Low-Level Factors Many low-level factors may affect performance Difficult to account for Determined by device s physical context 2) What aspects of a device s physical context contributes to the observed differences? Environment Device position 12

  13. Impact of Physical Context iPerf and ping from devices we control Vary environment (in/out, location, speed) and position relative to user 5 measurements in each position (round-robin) and environment 13

  14. Impact of Environment Location Indoors 1a Throughput 1491 Kbps Latency 416 ms Location Three offices in the same building Indoors 1b 98 Kbps 475 ms Indoors 1c 1842 Kbps 412 ms Stationary vs. moving Walking outdoors: 950Kbps Stationary outdoors: 1540Kbps Confirm prior results: environment changes may cause performance differences 14

  15. Impact of Device Position Throughput Latency > 350Kbps difference in some locations Devices in different positions may experience difference performance > 15ms difference in some locations 15

  16. Impact of Device Position What causes the performance differences? Cell sector Signal strength Small scale fading Throughput Signal stength Hand Pocket Loc 1a Indoors Hand Pocket 16

  17. Summary of Guidelines In-context measurements must be conducted: 1) Only on devices which are actively used 2) On devices in the same position and environment where they are actively used 3) At times when only low-bandwidth, non-jitter-sensitive user traffic is present 17

  18. Measurement System Crowdsource in-context active measurements Android-based prototype run by 12 volunteers Throughput measurements gathered Ground Truth: screen on; no network activity In-Context: follows guidelines Random: every 2-4 hours 18

  19. Measurement Accuracy Do in-context measurements gathered by our system accurately quantify experienced performance? by users interacting with device Accurately quantify performance experienced In-Context = Ground Truth for 18 hours 19

  20. Measurement Accuracy Analyses which ignore context will not Do random measurements quantify experienced performance? accurately quantify experienced performance Random differs by > 1Mbps 20

  21. Conclusion Quantify performance experienced when users are interacting with their device in specific contexts Empirical Study Idle devices: 6% less loss; 16ms lower latency Physical context change: > 350Kbps difference; > 15ms difference Measurement System Android-based prototype deployed to 12 volunteers Measurements depict performance experienced while user is active 21

  22. Related Work Cellular measurement tools Mark the Spot, MobiPerf, 3G Test, WiScape Automated active measurement systems NIMI, Scriptroute , DipZoom, ATEM, CEM Cellular network performance studies Latency, TCP performance, fairness, etc. 22

  23. Impact of Context Which contextual factors are most predictive of cellular network performance? Most Influential Least Influential 23

  24. Measurement Opportunities 24

  25. Measurement Service Decision Process 25

  26. Measurement Service Benchmarks Device position change detection False Negatives False Positives Event Correct Desk Hand 7 0 - Web browsing 5 - 2 Hand Pocket 7 0 - In pocket 7 - 0 Pocket Hand 7 0 - Hand Desk 6 1 - Energy overhead Functionality Energy Consumed in 1 Min Idle 0 Joules Active Monitoring 0.44 Joules Environment Monitoring (with GPS) 16.85 Joules Environment Monitoring (no GPS) 0.15 Joules 26

  27. Measurement System Design 27

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